Abstract

Abstract. Satellite image resolution has evolved to daily revisit and sub-meter GSD. Main targets of previous remote sensing were forest, vegetation, damage area by disasters, land use and land cover. Developments in satellite images have brought expectations on more sophisticated and various change detection of objects. Accordingly, we focused on unsupervised change detection of small objects, such as vehicles and ships. In this paper, existing change detection methods were applied to analyze their performances for pixel-based and feature-based change of small objects. We used KOMPSAT-3A images for tests. Firstly, we applied two change detection algorithms, MAD and IR-MAD, which are most well-known pixel-based change detection algorithms, to the images. We created a change magnitude map using the change detection methods. Thresholding was applied to determine change and non-change pixels. Next, the satellite images were transformed as 8-bit images for extracting feature points. We extracted feature points using SIFT and SURF methods to analyze feature-based change detection. We assumed to remove false alarms by eliminating feature points of non-changed objects. Therefore, we applied a feature-based matcher and matched feature points on identical image locations were eliminated. We used non-matched feature points for change/non-change analysis. We observed changes by creating a 5x5 size ROI around extracted feature points in the change/non-change map. We determined that change has occurred on feature points if the rate of change pixels with ROI was more than 50%. We analyzed the performance of pixel-based and feature-based change detection using ground truths. The F1-score, AUC value, and ROC were used to compare the performance of change detection. Performance showed that feature-based approaches performed better than pixel-based approaches.

Highlights

  • While spatial and temporal resolution of satellite images has been improved, one could expect more sophisticated change detection with daily revisit of satellites at sub-meter GSD

  • We focus on automated change detection of small objects without a priori templates

  • A feature point was determined as change if the ratio of change pixels was more than 50%

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Summary

INTRODUCTION

While spatial and temporal resolution of satellite images has been improved, one could expect more sophisticated change detection with daily revisit of satellites at sub-meter GSD (ground sampling distance). The literature has shown many researches on small object detection have used AI (Artificial Intelligence) and Deep learning for detecting and recognition object in remote sensing and computer vision (Tao et al, 2019, Radovic et al, 2017, Peng et al 2019). These works assumed the availability of image templates of the small objects of interest. We investigated whether the extracted change map and feature points could be used for localization of any changed object. We extracted change/non-change maps on feature points using unsupervised-based methods.

Dataset
Pre-processing
METHODOLOGY
Feature-based change detection
RESULT
Findings
CONCLUSION
Full Text
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